可控性
网络可控性
计算机科学
公制(单位)
连接体
生物网络
复杂网络
网络拓扑
网络科学
生命银行
可用性
人类连接体项目
图论
控制(管理)
数据科学
拓扑(电路)
人工智能
中间性中心性
人机交互
功能连接
数学
计算机网络
中心性
生物信息学
神经科学
生物
工程类
万维网
组合数学
运营管理
应用数学
作者
Remy Ben Messaoud,Vincent Le Du,Camile Bousfiha,Marie‐Constance Corsi,Juliana Gonzalez-Astudillo,Brigitte C. Kaufmann,Tristan Venot,Baptiste Couvy‐Duchesne,Ludovico Migliaccio,Charlotte Rosso,Paolo Bartolomeo,Mario Chávez,Fabrizio De Vico Fallani
标识
DOI:10.1371/journal.pcbi.1012691
摘要
Identifying the driver nodes of a network has crucial implications in biological systems from unveiling causal interactions to informing effective intervention strategies. Despite recent advances in network control theory, results remain inaccurate as the number of drivers becomes too small compared to the network size, thus limiting the concrete usability in many real-life applications. To overcome this issue, we introduced a framework that integrates principles from spectral graph theory and output controllability to project the network state into a smaller topological space formed by the Laplacian network structure. Through extensive simulations on synthetic and real networks, we showed that a relatively low number of projected components can significantly improve the control accuracy. By introducing a new low-dimensional controllability metric we experimentally validated our method on N = 6134 human connectomes obtained from the UK-biobank cohort. Results revealed previously unappreciated influential brain regions, enabled to draw directed maps between differently specialized cerebral systems, and yielded new insights into hemispheric lateralization. Taken together, our results offered a theoretically grounded solution to deal with network controllability and provided insights into the causal interactions of the human brain.
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